Estimating the query difficulty for information retrieval
Author(s)
Bibliographic Information
Estimating the query difficulty for information retrieval
(Synthesis lectures on information concepts, retrieval, and services, 15)
Morgan & Claypool, c2010
Available at / 3 libraries
-
University of Tsukuba Library, Library on Library and Information Science
007.58-C1910011010329
-
No Libraries matched.
- Remove all filters.
Note
Includes bibliographical references
Description and Table of Contents
Description
Many information retrieval (IR) systems suffer from a radical variance in performance when responding to users' queries. Even for systems that succeed very well on average, the quality of results returned for some of the queries is poor. Thus, it is desirable that IR systems will be able to identify ""difficult"" queries so they can be handled properly. Understanding why some queries are inherently more difficult than others is essential for IR, and a good answer to this important question will help search engines to reduce the variance in performance, hence better servicing their customer needs. Estimating the query difficulty is an attempt to quantify the quality of search results retrieved for a query from a given collection of documents. This book discusses the reasons that cause search engines to fail for some of the queries, and then reviews recent approaches for estimating query difficulty in the IR field. It then describes a common methodology for evaluating the prediction quality of those estimators, and experiments with some of the predictors applied by various IR methods over several TREC benchmarks. Finally, it discusses potential applications that can utilize query difficulty estimators by handling each query individually and selectively, based upon its estimated difficulty.
Table of Contents
Introduction - The Robustness Problem of Information Retrieval
Basic Concepts
Query Performance Prediction Methods
Pre-Retrieval Prediction Methods
Post-Retrieval Prediction Methods
Combining Predictors
A General Model for Query Difficulty
Applications of Query Difficulty Estimation
Summary and Conclusions
by "Nielsen BookData"